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 #ifndef IMPL_ORGANIZED_SEGMENTATION_HPP_
 #define IMPL_ORGANIZED_SEGMENTATION_HPP_
 
 #include <pcl/apps/cloud_composer/tools/organized_segmentation.h>
 #include <pcl/apps/cloud_composer/impl/cloud_item.hpp>
 #include <pcl/apps/cloud_composer/items/normals_item.h>
 #include <pcl/point_cloud.h>
 
 #include <pcl/segmentation/organized_multi_plane_segmentation.h>
 #include <pcl/segmentation/plane_coefficient_comparator.h>
 #include <pcl/segmentation/euclidean_plane_coefficient_comparator.h>
 #include <pcl/segmentation/rgb_plane_coefficient_comparator.h>
 #include <pcl/segmentation/edge_aware_plane_comparator.h>
 #include <pcl/segmentation/euclidean_cluster_comparator.h>
 #include <pcl/segmentation/organized_connected_component_segmentation.h>
 
 
 template <typename PointT> QList <pcl::cloud_composer::CloudComposerItem*>
 pcl::cloud_composer::OrganizedSegmentationTool::performTemplatedAction (QList <const CloudComposerItem*> input_data)
 {
   QList <CloudComposerItem*> output;  
   
   foreach (const CloudComposerItem* input_item, input_data)
   {
     QVariant variant = input_item->data (ItemDataRole::CLOUD_TEMPLATED);
     if ( ! variant.canConvert <typename PointCloud<PointT>::Ptr> () )
     {  
       qWarning () << "Attempted to cast to template type which does not exist in this item! (input list)";
       return output;
     }
     typename PointCloud <PointT>::Ptr input_cloud = variant.value <typename PointCloud<PointT>::Ptr> ();
     if ( ! input_cloud->isOrganized ())
     {
       qCritical () << "Organized Segmentation requires an organized cloud!";
       return output;
     }
   }
   
   int min_inliers = parameter_model_->getProperty ("Min Inliers").toInt ();
   int min_plane_size = parameter_model_->getProperty ("Min Plane Size").toInt ();
   double angular_threshold = parameter_model_->getProperty ("Angular Threshold").toDouble ();
   double distance_threshold = parameter_model_->getProperty ("Distance Threshold").toDouble ();
   double cluster_distance_threshold = parameter_model_->getProperty ("Cluster Dist. Thresh.").toDouble ();
   int min_cluster_size = parameter_model_->getProperty ("Min Cluster Size").toInt ();
   
   foreach (const CloudComposerItem* input_item, input_data)
   {
     QList <CloudComposerItem*> normals_list = input_item->getChildren (CloudComposerItem::NORMALS_ITEM);
     //Get the normals cloud, we just use the first normals that were found if there are more than one
     pcl::PointCloud<pcl::Normal>::ConstPtr input_normals = normals_list.value(0)->data(ItemDataRole::CLOUD_TEMPLATED).value <pcl::PointCloud<pcl::Normal>::ConstPtr> ();
     
     QVariant variant = input_item->data (ItemDataRole::CLOUD_TEMPLATED);
     typename PointCloud <PointT>::Ptr input_cloud = variant.value <typename PointCloud<PointT>::Ptr> ();
     
     pcl::OrganizedMultiPlaneSegmentation<PointT, pcl::Normal, pcl::Label> mps;
     mps.setMinInliers (min_inliers);
     mps.setAngularThreshold (pcl::deg2rad (angular_threshold)); // convert to radians
     mps.setDistanceThreshold (distance_threshold); 
     mps.setInputNormals (input_normals);
     mps.setInputCloud (input_cloud);
     std::vector<pcl::PlanarRegion<PointT>, Eigen::aligned_allocator<pcl::PlanarRegion<PointT> > > regions;
     std::vector<pcl::ModelCoefficients> model_coefficients;
     std::vector<pcl::PointIndices> inlier_indices;  
     pcl::PointCloud<pcl::Label>::Ptr labels (new pcl::PointCloud<pcl::Label>);
     std::vector<pcl::PointIndices> label_indices;
     std::vector<pcl::PointIndices> boundary_indices;
     mps.segmentAndRefine (regions, model_coefficients, inlier_indices, labels, label_indices, boundary_indices);
     
     std::vector<bool> plane_labels;
     plane_labels.resize (label_indices.size (), false);
     for (size_t i = 0; i < label_indices.size (); i++)
     {
       if (label_indices[i].indices.size () > min_plane_size)
       {
         plane_labels[i] = true;
       }
     }
     typename PointCloud<PointT>::CloudVectorType clusters;
     
     typename EuclideanClusterComparator<PointT, pcl::Normal, pcl::Label>::Ptr euclidean_cluster_comparator = boost::make_shared <EuclideanClusterComparator<PointT, pcl::Normal, pcl::Label> > ();
     euclidean_cluster_comparator->setInputCloud (input_cloud);
     euclidean_cluster_comparator->setLabels (labels);
     euclidean_cluster_comparator->setExcludeLabels (plane_labels);
     euclidean_cluster_comparator->setDistanceThreshold (cluster_distance_threshold, false);
     
     pcl::PointCloud<pcl::Label> euclidean_labels;
     std::vector<pcl::PointIndices> euclidean_label_indices;
     pcl::OrganizedConnectedComponentSegmentation<PointT,pcl::Label> euclidean_segmentation (euclidean_cluster_comparator);
     euclidean_segmentation.setInputCloud (input_cloud);
     euclidean_segmentation.segment (euclidean_labels, euclidean_label_indices);
     
     pcl::IndicesPtr extracted_indices (new std::vector<int> ());
     for (size_t i = 0; i < euclidean_label_indices.size (); i++)
     {
       if (euclidean_label_indices[i].indices.size () >= min_cluster_size)
       {
         typename PointCloud<PointT>::Ptr cluster = boost::shared_ptr<PointCloud<PointT> > (new PointCloud<PointT>);
         pcl::copyPointCloud (*input_cloud,euclidean_label_indices[i].indices,*cluster);
         qDebug () << "Found cluster with size " << cluster->width;
         QString name = input_item->text () + tr ("- Clstr %1").arg (i);
         CloudItem*  new_cloud_item = CloudItem::createCloudItemFromTemplate<PointT>(name,cluster);
         output.append (new_cloud_item);
         extracted_indices->insert (extracted_indices->end (), euclidean_label_indices[i].indices.begin (), euclidean_label_indices[i].indices.end ());
         
       }    
     }
     
     for (size_t i = 0; i < label_indices.size (); i++)
     {
       if (label_indices[i].indices.size () >= min_plane_size)
       {
         typename PointCloud<PointT>::Ptr plane = boost::shared_ptr<PointCloud<PointT> > (new PointCloud<PointT>);
         pcl::copyPointCloud (*input_cloud,label_indices[i].indices,*plane);
         qDebug () << "Found plane with size " << plane->width;
         QString name = input_item->text () + tr ("- Plane %1").arg (i);
         CloudItem*  new_cloud_item = CloudItem::createCloudItemFromTemplate<PointT>(name,plane);
         output.append (new_cloud_item);
         extracted_indices->insert (extracted_indices->end (), label_indices[i].indices.begin (), label_indices[i].indices.end ());
         
       }    
     }
     typename PointCloud<PointT>::Ptr leftovers = boost::shared_ptr<PointCloud<PointT> > (new PointCloud<PointT>);
     if (extracted_indices->size () == 0)
       pcl::copyPointCloud (*input_cloud,*leftovers);
     else
     {
       pcl::ExtractIndices<PointT> filter;
       filter.setInputCloud (input_cloud);
       filter.setIndices (extracted_indices);
       filter.setNegative (true);
       filter.filter (*leftovers);
     }
     CloudItem*  leftover_cloud_item = CloudItem::createCloudItemFromTemplate<PointT>(input_item->text(),leftovers);
     output.append (leftover_cloud_item);
   }
   
   
   
   
   return output;
   
 }
 
 
 #define PCL_INSTANTIATE_performTemplatedAction(T) template PCL_EXPORTS void pcl::cloud_composer::OrganizedSegmentationTool::performTemplatedAction<T> (QList <const CloudComposerItem*>);
 
 
 
 #endif //IMPL_TRANSFORM_CLOUDS_HPP_
